US12367507B2 - Systems and methods for managing vehicle operator profiles based on universal telematics inferences via a telematics marketplace - Google Patents
Systems and methods for managing vehicle operator profiles based on universal telematics inferences via a telematics marketplaceInfo
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- US12367507B2 US12367507B2 US18/065,847 US202218065847A US12367507B2 US 12367507 B2 US12367507 B2 US 12367507B2 US 202218065847 A US202218065847 A US 202218065847A US 12367507 B2 US12367507 B2 US 12367507B2
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Definitions
- Some embodiments of the present disclosure are directed to management of user information. More particularly, certain embodiments of the present disclosure provide systems and methods for managing vehicle operator profiles based on universal telematics inferences via a telematics marketplace. Merely by way of example, the present disclosure has been applied to management of user information using a telematics-data-based marketplace, but it would be recognized that the present disclosure has much broaden range of applicability.
- Some embodiments of the present disclosure are directed to management of user information. More particularly, certain embodiments of the present disclosure provide systems and methods for managing vehicle operator profiles based on universal telematics inferences via a telematics marketplace. Merely by way of example, the present disclosure has been applied to management of user information using a telematics-data-based marketplace, but it would be recognized that the present disclosure has much broader range of applicability.
- a computer-implemented method for data management includes: collecting a plurality of personal data sets associated with a plurality of vehicle operators continually, collecting a plurality of sensor data sets associated with the plurality of vehicle operators continually via one or more sensing modules; for each vehicle operator of the plurality of vehicle operators: generating and continually updating an operator profile including the personal data set associated with the vehicle operator; determining and continually updating one or more telematics inferences using one or more universal predictive models based at least in part upon the sensor data set associated with the vehicle operator, the one or more universal predictive models having a plurality of weights and biases hidden to the marketplace participants; generating and continually updating a data profile including the one or more telematics inferences associated with the vehicle operator; and listing and continually updating the data profile onto a telematics marketplace to be accessible by a plurality of marketplace participants; receiving, from a requesting party of the plurality of marketplace participants, an information request for a target operator profile associated with a target data profile selected from the listed data profiles of the
- a computing system for data management includes: one or more processors; and a memory storing instructions that, upon execution by the one or more processors, cause the computing system to perform one or more processes including: collecting a plurality of personal data sets associated with a plurality of vehicle operators continually; collecting a plurality of sensor data sets associated with the plurality of vehicle operators continually via one or more sensing modules, for each vehicle operator of the plurality of vehicle operators: generating and continually updating an operator profile including the personal data set associated with the vehicle operator; determining and continually updating one or more telematics inferences using one or more universal predictive models based at least in part upon the sensor data set associated with the vehicle operator, the one or more universal predictive models having a plurality of weights and biases hidden to the marketplace participants; generating and continually updating a data profile including the one or more telematics inferences associated with the vehicle operator; and listing and continually updating the data profile onto a telematics marketplace to be accessible by a plurality of marketplace participants, receiving, from
- a non-transitory computer-readable medium storing instructions for data management, the instructions upon execution by one or more processors of a computing system, cause the computing system to perform one or more processes including: collecting a plurality of personal data sets associated with a plurality of vehicle operators continually; collecting a plurality of sensor data sets associated with the plurality of vehicle operators continually via one or more sensing modules; for each vehicle operator of the plurality of vehicle operators: generating and continually updating an operator profile including the personal data set associated with the vehicle operator; determining and continually updating one or more telematics inferences using one or more universal predictive models based at least in part upon the sensor data set associated with the vehicle operator, the one or more universal predictive models having a plurality of weights and biases hidden to the marketplace participants, generating and continually updating a data profile including the one or more telematics inferences associated with the vehicle operator; and listing and continually updating the data profile onto a telematics marketplace to be accessible by a plurality of marketplace participants; receiving, from a requesting
- FIG. 2 is a simplified diagram showing a computing system for data management including a universal predictive module according to various embodiments of the present disclosure.
- each user device of the one or more user devices 106 includes a GPS sensor, an accelerometer, and/or a gyroscope.
- the one or more user devices 106 may collect user data, such as geographic coordinate data, time measurement data, and/or telematics data.
- the telematics inferences determining and updating module 210 is configured to determine and/or continually update a predicted losses and a predicted expenses based at least in part upon the associated continually received personal data set and the associated continually received sensor data set.
- the one or more telematics inferences includes a profitability score, a reliability score, a financial stability score, a financial reliability score, a demographic score, a mobility score, a predicted risk score, a predicted costs score, a pre dieted retention score, and/or a payment reliability score.
- the process 302 of collecting a plurality of personal data sets continually includes collecting a plurality of personal data sets associated with a plurality of vehicle operators continually.
- the personal data set includes vehicle operator-answered questionnaire data, application-usage data, device-usage data, internee-browsing data, and/or government data.
- personal data include name, age, sex, gender, vehicle operation history, geolocation, occupation, financial data, homeownership data, credit score, personal preferences, and/or personal values.
- the process 304 of collecting a plurality of sensor data sets continually includes collecting a plurality of sensor data sets associated with the plurality of vehicle operators continually via one or more sensing modules.
- the one or more sensing modules includes a common module used by a plurality of mobile applications.
- the common module is a software module or a common hardware module.
- each vehicle operator uses at least one mobile application of the plurality of mobile applications.
- the plurality of mobile applications includes a system software application, an entertainment software application, a gaming software application, a navigation software application, and/or an environment software application.
- the process 306 of generating and continually updating an operator profile includes generating and continually updating, such as for each vehicle operator of the plurality of vehicle operators, an operator profile including the personal data set associated with the vehicle operator.
- the process 310 of determining and continually updating one or more telematics inferences using one or more universal predictive models includes determining and continually updating, such as for each vehicle operator of the plurality of vehicle operators, one or more telematics inferences based at least in part upon the sensor data set associated with the vehicle operator. In some examples, the process 310 of determining and continually updating one or more telematics inferences includes determining and continually updating a predicted profitability based at least in part upon the associated continually received personal data set and the associated continually received sensor data set.
- the determining and continually updating the predicted profitability includes determining and continually updating the predicted profitability using a universal predictive model having a plurality of weights and biases that correspond to the importance of each type of sensor data in the determination of the predicted profitability. In some examples, the determining and continually updating the predicted profitability includes determining and continually updating a predicted costs and a predicted revenue based at least in part upon the associated continually received personal data set and the associated continually received sensor data set. In some examples, the determining and continually updating the predicted profitability includes determining and continually updating a predicted losses and a predicted expenses based at least in part upon the associated continually received personal data set and the associated continually received sensor data set.
- the one or more telematics inferences includes a profitability score, a reliability score, a financial stability score, a financial reliability score, a demographic score, a mobility score, a predicted risk score, a predicted costs score, a predicted retention score, and/or a payment reliability score.
- the process 310 of determining and continually updating one or more telematics inferences includes collecting, from the plurality of marketplace participants, user acquisition data indicative of whether or not vehicle operators associated with transmitted target operator profiles are successfully acquired as users. In some examples, the process 310 of determining and continually updating one or more telematics inferences includes determining, based at least in part upon the user acquisition data, one or mote model modifications. In some examples, the process 310 of determining and continually updating one or more telematics inferences includes modifying the one or more universal predictive models based at least in part upon the one or more model modifications.
- the process 312 of generating and continually updating, such as for each vehicle operator of the plurality of vehicle operators, a data profile includes generating and continually updating a data profile including the one or more telematics inferences associated with the vehicle operator.
- the process 314 of listing and continually updating, such as for each vehicle operator of the plurality of vehicle operators, the data profile onto a telematics marketplace includes listing and continually updating the data profile onto a telematics marketplace to be accessible by a plurality of marketplace participants.
- the plurality of marketplace participants includes an insurance company, a car rental company, a vehicle manufacturing company, an autonomous driving firm, a shared ride company, a housing firm, a bank, and/or a government agency.
- the process 316 of receiving an information request for a target operator profile includes receiving, such as from a requesting party of the plurality of marketplace participants, an information request for a target operator profile associated with a target data profile selected from the listed data profiles of the plurality of vehicle operators.
- the process 318 of transmitting the target operator profile includes transmitting, such as in response to the information request, the target operator profile to the requesting party
- FIG. 4 is a simplified diagram showing a computer device 5000 , according to various embodiments of the present disclosure. This figure is merely an example, which should not unduly limit the scope of the claims. One of ordinary skill in the art would recognize many variations, alternatives, and modifications.
- the computer device 5000 includes a processing unit 5002 , a memory unit 5004 , an input unit 5006 , an output unit 5008 , and a communication unit 5010 .
- the computer device 5000 is configured to be in communication with a user 5100 and/or a storage device 5200 .
- the system computer device 5000 is configured according to system 200 of FIG. 2 and/or to implement method 300 of FIG. 3 .
- the processing unit 5002 is configured for executing instructions, such as instructions to implement method 300 of FIG. 3 .
- executable instructions may be stored in the memory unit 5004 .
- the processing unit 5002 includes one or more processing units (e.g., in a multi-core configuration).
- the processing unit 5002 includes and/or is communicatively coupled to one or more modules for implementing the systems and methods described in the present disclosure.
- the processing unit 5002 is configured to execute instructions within one or more operating systems, such as UNIX, LINUX, Microsoft Windows®, etc.
- one or more instructions is executed during initialization.
- one or more operations is executed to perform one or more processes described herein.
- an operation may be general or specific to a particular programming language (e.g., C, C#, C++, Java, or other suitable programming languages, etc.)
- the processing unit 5002 is configured to be operatively coupled to the storage device 5200 , such as via an on-board storage unit 5012 .
- the memory unit 5004 includes a device allowing information, such as executable instructions and/or other data to be stored and retrieved.
- memory unit 5004 includes one or more computer readable media.
- stored in memory unit 5004 include computer readable instructions for providing a user interface, such as to the user 5004 , via the output unit 5008 in some examples, a user interface includes a web browser and/or a client application.
- a web browser enables one or more users, such as the user 5004 , to display and/or interact with media and/or other information embedded on a web page and/or a website.
- the memory unit 5004 include computer readable instructions for receiving and processing an input, such as from the user 5004 , via the input unit 5006 .
- the memory unit 5004 includes random access memory (RAM) such as dynamic RAM (DRAM) or static RAM (SRAM), read-only memory (ROM), erasable programmable read-only memory (EPROM), electrically erasable programmable read-only memory (EEPROM), and/or non-volatile RAM (NVRAN).
- RAM random access memory
- DRAM dynamic RAM
- SRAM static RAM
- ROM read-only memory
- EPROM erasable programmable read-only memory
- EEPROM electrically erasable programmable read-only memory
- NVRAN non-volatile RAM
- the output unit 5008 includes a media output unit configured to present information to the user 5004 .
- the output unit 5008 includes any component capable of conveying information to the user 5004 .
- the output unit 5008 includes an output adapter, such as a video adapter and/or an audio adapter.
- the output unit 5008 is operatively coupled to the processing unit 5002 and/or operatively coupled to an presenting device configured to present the information to the user, such as via a visual display device (e.g., a liquid crystal display (LCD), a light emitting diode (LED) display, an organic light emitting diode (OLED) display, a cathode ray tube (CRT) display, an “electronic ink” display, a projected display, etc.) or an audio display device (e.g., a speaker arrangement or headphones).
- a visual display device e.g., a liquid crystal display (LCD), a light emitting diode (LED) display, an organic light emitting diode (OLED) display, a cathode ray tube (CRT) display, an “electronic ink” display, a projected display, etc.
- an audio display device e.g., a speaker arrangement or headphones.
- the communication unit 5010 is configured to be communicatively coupled to a remote device.
- the communication unit 5010 includes a wired network adapter, a wireless network adapter, a wireless data transceiver for use with a mobile phone network (e.g., Global System for Mobile communications (GSM), 3G, 4G, 5G, NEC, or Bluetooth), and/or other mobile data networks (e.g., Worldwide Interoperability for Microwave Access (WIMAX)).
- GSM Global System for Mobile communications
- 3G, 4G, 5G, NEC, or Bluetooth e.g., Worldwide Interoperability for Microwave Access (WIMAX)
- WIMAX Worldwide Interoperability for Microwave Access
- other types of short-range or long-range networks may be used.
- the communication unit 5010 is configured to provide email integration for communicating data between a server and one or more clients.
- the storage unit 5012 is configured to enable communication between the computer device 5000 , such as via the processing unit 5002 , and an external storage device 5200 .
- the storage unit 5012 is a storage interface.
- the storage interface is any component capable of providing the processing unit 5002 with access to the storage device 5200 .
- the storage unit 5012 includes an Advanced Technology Attachment (ATA) adapter, a Serial ATA (SATA) adapter, a Small Computing system Interface (SCSI) adapter, a RAID controller, a SAN adapter, a network adapter, and/or any other component capable of providing the processing unit 5002 with access to the storage device 5200 .
- ATA Advanced Technology Attachment
- SATA Serial ATA
- SCSI Small Computing system Interface
- RAID controller a SAN adapter
- SAN adapter a network adapter
- the vehicle system 7002 includes a vehicle 7010 and a client device 7012 associated with the vehicle 7010 .
- the client device 7012 is an on-board computer embedded or located in the vehicle 7010 .
- the client device 7012 is a mobile device (e.g., a smartphone) that is connected (e.g., via a wired connection or a wireless connection) to the vehicle 7010 .
- the server 7006 includes a processor 7030 (e.g., a microprocessor, a microcontroller), a memory 7032 (e.g., a storage unit), a communications unit 7034 (e.g., a network transceiver), and a data storage 7036 (e.g., one or more databases).
- the server 7006 is a single server, while in certain embodiments, the server 7006 includes a plurality of servers with distributed processing and/or storage.
- the data storage 7036 is part of the server 7006 , such as coupled via a network (e.g., the network 7004 ).
- the server 7006 includes various software applications stored in the memory 7032 and executable by the processor 7030 .
- these software applications include specific programs, routines, and/or scripts for performing functions associated with the methods of the present disclosure.
- the software applications include general-purpose software applications for data processing, network communication, database management, web server operation, and/or other functions typically performed by a server in various examples
- the server 7006 is configured to receive, such as via the network 7004 and via the communications unit 7034 , the data collected by the one or more sensors 7024 from the client device 7012 , and stores the data in the data storage 7036 .
- the server 7006 is further configured to process, via the processor 7030 , the data to perform one or more processes of the methods of the present disclosure.
- systems and methods of the present disclosure provide a marketplace configured to automatically match a customer seeking insurance to one or more insurance policy offers based at least in part upon the customer's associated telematics data.
- said telematics data are collected via a mobile device associated with the customer, such as via one or more software applications installed on the mobile device.
- the one or more software applications includes a system software application, an entertainment software application, a gaming software application, a navigation software application, and/or an environment software application.
- systems and methods of the present disclosure provide a marketplace configured to provide telematics data and/or inferences that are industry-specific, market-specific, and/or use-specific. Telematics inferences may include scores, ratings, insights, guidance and recommendation, and/or calculation results.
- Telematics inferences may include scores, ratings, insights, guidance and recommendation, and/or calculation results.
- a user of the marketplace may be in the auto insurance industry and may receive auto-insurance-related score(s), rating(s), insight(s), recommendation(s), and/or calculation result(s) transmitted by the marketplace.
- the marketplace may determine the industry-specific score(s), rating(s), insight(s), recommendation(s), and/or calculation result(s) using one or more industry-specific algorithms, such as ones provided by the industry user(s).
- the industry-specific algorithms may include weights and biases that correspond to the importance of each type of telematics data associated with a plurality of vehicle operators.
- the user of the marketplace may be in the banking industry and may receive credit-worthiness score(s), rating(s), insight(s), recommendation(s), and/or calculation result(s) transmitted by the marketplace.
- the marketplace may determine the use-specific score(s), rating(s), insight(s), recommendation(s), and/or calculation result(s) using one or more use-specific algorithms, such as ones provided by the user(s) having a specific use.
- the use-specific algorithms may include weights and biases that correspond to the importance of each type of telematics data associated with a plurality of vehicle operators.
- systems and methods of the present disclosure collect telematics data associated with a plurality of vehicle operators using one or more software and/or hardware modules, such as of a software application installed on a portable device associated with each vehicle operator of the plurality of vehicle operators.
- the plurality of vehicle operators may be users and/or clients of one or more insurance companies, one or more banks, one or more health insurers, one or more rental companies, one or mote vehicle manufacturers, one or more ride-share companies, one or more housing Gnus, and/or one or more autonomous driving companies.
- each vehicle operator of the plurality of vehicle operators may be provided with the hardware module and/or software module configured to collect telematics data from an associated insurance company, an associated bank, an associated health insurer, an associated rental company, an associated vehicle manufacturer, an associated ride-share company, an associated housing firm, and/or an associated autonomous driving company.
- systems and methods of the present disclosure provide a universal marketplace for a plurality of users, a plurality of clients, a plurality of vehicle operators, a plurality of subscribers, and/or a plurality of members for collecting, scoring, storing, managing, and/or sharing telematics data and telematics-based inferences regarding the plurality of vehicle operators.
- the systems and methods of the present disclosure provide the universal marketplace using continual, such as real-time or near-real-time, collecting of telematics data, determining of telematics-based inferences, and/or presenting of telematics data and/or telematics-based inferences.
- the systems and methods of the present disclosure provide the universal marketplace using intermittent, such as by Hollowing a pre-determined scheduled, collecting of telematics data, determining of telematics-based inferences, and/or presenting of telematics data and/or telematics-based inferences.
- systems and methods of the present disclosure collect telematics data via a software development kit (SDK), such as via a common software development kit installed as pan of a plurality of software applications.
- SDK software development kit
- each mobile device of a plurality of mobile devices e.g., phones, vehicles, and/or portable units
- each mobile device of a plurality of mobile devices e.g., phones, vehicles, and/or portable units
- each software application of the one or more software applications may collect, via one or more hardware modules associated with a vehicle operated by the associated vehicle operator, one or more types of telematics data (e.g., acceleration, braking, cornering).
- the common SDK may configure a first software application to collect a first set of telematics data and configure a second software application to collect a second set of telematics data, where both the first set of telematics data and the second set of telematics data may be combined complimentarily to describe driving behaviors of a corresponding vehicle operator during a corresponding time period.
- systems and methods of the present disclosure collects telematics data, such as via a plurality of software applications having a common SDK such that the telematics data collected are in standardized formats) such that the marketplace may process the telematics data on a consistent basis.
- a plurality of software applications may include a common SDK configured to enable background-location tracking, which when enabled, collects at least location-based telematics data for the associated vehicle operator(s).
- systems and methods of the present disclosure share and/or transmit information (e.g., telematics data, telematics-data-based inferences such as score(s), rating(s), insight(s), recommendation(s), and/or calculation result(s)) with marketplace participants (e.g., users, clients, and/or subscribers) in a standardized or universally accepted data format(s) and delivery protocol(s) (e.g., with one or more security features to ensure data security and/or privacy).
- the information may be populated consistently to a plurality of marketplace participants of a plurality of industries having a plurality of uses for the data.
- systems and methods of the present disclosure provide a shared telematics data-based marketplace to be accessed, such as via a subscription or authentication requirement, by a plurality of marketplace participants.
- the plurality of marketplace participants may provide input data and/or algorithm(s) to the determining module(s) of the marketplace to obtain telematics-data-based inferences such as score(s), rating(s), insight(s), recommendation(s), and/or calculation result(s).
- none or some or all of the input data provided by a marketplace participant are shared with none or some or all of the other marketplace participants of the plurality of marketplace participants.
- none or some or all of the telematics-data-based inferences determined by the marketplace modules based on input data from a marketplace participant are shared with none or some or all of the other marketplace participants of the plurality of marketplace participants.
- systems and methods of the present disclosure provide a shared telematics data-based marketplace configured to collect telematics data, from a plurality of vehicle operators, using a plurality of software applications including a common SDK and further configured to share, with a plurality of marketplace participants, the telematics data and/or telematics-data-based inferences (e.g., score(s), rating(s), insight(s), recommendation(s), and/or calculation result(s)) determined based at least in part upon the telematics data.
- telematics data and/or telematics-data-based inferences e.g., score(s), rating(s), insight(s), recommendation(s), and/or calculation result(s)
- systems and methods of the present disclosure provide a telematics-data-based marketplace with a plurality of access levels.
- Each access level of the plurality of access levels may be associated with a privacy level and/or a security level such that a marketplace participant granted with such access level is protected against unwanted disclosure of certain telematics data and/or telematics data-based inferences.
- a marketplace participant may select which access level it will allow, for part or all of its telematics data and/or telematics data-based inferences, other marketplace participants to access.
- a marketplace participant may select an access level that requires other marketplace participants to acquire approval, such as via an authentication process or a transaction, before being allowed to access and/or use part of all of its telematics data available on the telematics-based marketplace.
- a marketplace participant may select a no-access access level that forbids any third party from accessing and/or using its telematics data available on the telematics-based marketplace. Such no-access access level may be desirable for marketplace participants whose clients or users chose to opt-out from data share or data sale.
- a marketplace participant is a marketplace supplier when it supplies telematics data and/or telematics-data-based inferences onto the marketplace.
- a marketplace participant is a marketplace consumer when it access telematics data and/or telematics-data-based inferences available on the marketplace.
- a marketplace participant can be both a marketplace supplier and a marketplace consumer.
- a marketplace supplier may select an access level to control access of its telematics data and/or telematics-data-based inferences by marketplace consumer(s) who desire access.
- a marketplace consumer may purchase an access level to gain access of a marketplace supplier's telematics data and/or telematics-data-based inferences.
- systems and methods of the present disclosure provide a telematics-based marketplace, collect and make available telematics data associated with a plurality of vehicle operators, optionally generate telematics-data-based inferences, present telematics data and/or telematics-data-based inferences to one or more marketplace participants, and receive one or more requests for profile information associated with one or more interested vehicle operators of the plurality of vehicle operators based at least in part upon the telematics data and/or the telematics-data-based inferences.
- the profile information requested are specific to one or more advertisements.
- the profile information are collected manually and/or automatically from vehicle operator(s), marketplace participant(s), and/or public database(s).
- the marketplace and/or the marketplace participants may collect personal information via vehicle operator-answered questionnaires, application-usage data, device-usage data, internet-browsing data, and/or government agencies.
- a vehicle operator may opt-out from permitting marketplace participants to upload and/or share his/her corresponding telematics data and/or personal data via the marketplace either in part or in full.
- the plurality of marketplace participants may monitor a vehicle operator via the telematics data and/or the associated telematics-data-bared inferences on the marketplace to determine whether to extend a new service or discount, and/or adjust an existing service or an associated price.
- systems and methods of the present disclosure provide a telematics-based auction marketplace including one or more auction features and/or mechanisms.
- systems and methods of the present disclosure provide a telematics-based auction marketplace configured to receive bids front a plurality of marketplace participants for one or more user profiles and the associated user information.
- systems and methods of the present disclosure present telematics data and/or telematics data-based inferences to a plurality of marketplace participants such that the plurality of marketplace participants may determine whether to bid for a user based at least in part upon the user's associated telematics data and/or telematics data-based inferences.
- systems and methods of the present disclosure receive one or more bids from a plurality of marketplace participants automatically, continuously, and/or intermittently.
- systems and methods of the present disclosure receive, such as via one or more software applications and/or hardware modules, new bid(s) and/or updated bid(s) for a vehicle operator's information whenever new information becomes available on the marketplace.
- systems and methods of the present disclosure provide a shared telematics-based marketplace and collect telematics data associated with a plurality of vehicle operators using one or more software applications and/or hardware modules.
- the one or more software applications and/or hardware modules may be configured to perform a primary task other than to collect telematics data.
- the primary task may be to provide a user environmental information (e.g., weather), to provide a user geolocational information and/or directions, to provide a user entertainment (e.g., gaming, music, movie, video), and/or to provide a user device information
- the one or more software applications and/or hardware modules may be provided to a vehicle operator by one or more marketplace participants.
- the one or more software applications and/or hardware modules may collect telematics data in universal format(s) and/or protocol(s) for improved inter operability.
- the one or more software applications and/or hardware modules may be provided by marketplace participants of the same industry.
- systems and methods of the present disclosure provide a shared telematics-based marketplace and collect a first telematics data associated with a first vehicle operator using a first set of software applications and/or hardware modules, and collect a second telematics data associated with a second vehicle operator using a second set of software applications and/or hardware modules.
- the first set of software applications and/or hardware modules may be provided by a first marketplace participant whom the first vehicle operator has a relationship with (e.g., as a client, a customer, and/or a user).
- the second set of software applications and/or hardware modules may be provided by a second marketplace participant whom the second vehicle operator has a relationship with (e.g., as a client, a customer, and/or a user).
- the marketplace may present the first telematics data, the second telematics data, and/or associated telematics data-based inference(s), to a plurality of marketplace participants (e.g., including the first marketplace participant and/or the second marketplace participant).
- systems and methods of the present disclosure provide a telematics-based marketplace for user information to a plurality of marketplace participants.
- the telematics-based marketplace is provided as a universal portal or interface for the plurality of marketplace participants to request, share, and/or analyze telematics data and/or telematics-data-based inferences of one or more vehicle operators.
- the telematics-based marketplace collects and presents, such as automatically, and/or continuously, telematics data and/or telematics-data-based inferences from a plurality of sources including one or more of the marketplace participants, public entities, and/or directly from devices associated with the vehicle operator(s).
- systems and methods of the present disclosure generate a score associated with each vehicle operator listed on the telematics-data-based marketplace.
- the score is generated based at least in pan upon the associated vehicle operator's sensor data.
- the score is generated such that it represents or informs a risk of collision of the associated vehicle operator.
- the score is generated such that it represents or informs a predicted cost and/or profitability should a marketplace participant acquire or maintain the vehicle operator as a customer, user, or client.
- the score may be a profitability score and may be generated as a ratio of predicted cost to policy premium.
- the predicted costs is generated based at least in part upon the associated telematics data and/or additional personal data (e.g., financial data, geolocational data, health data, activity data).
- additional personal data e.g., financial data, geolocational data, health data, activity data.
- multiple profitability scores corresponding to multiple policy premium may be generated and presented to a marketplace participant to help the marketplace participant to determine which policy premium(s) would lead to a satisfactory profitability for the associated vehicle operator as a customer. This may help a marketplace participant to improve its pricing mechanism and/or profitability.
- systems and methods of the present disclosure generate, maintain, and update a score associated with each vehicle operator listed on the telematics-data-based marketplace using a residual model.
- systems and methods of the present disclosure train and/or configure the residual model to determine an initial score for each vehicle operator based at least in part upon the telematics data collected prior to the listing of the vehicle operator onto the marketplace.
- systems and methods of the present disclosure train and/or configure the residual model to further determine an updated score based at least in part upon the initial score and newly collected telematics data collected during one or more recent trips operated by the vehicle operator.
- the residual model is trained, configured, maintained, and/or updated by one or more marketplace participants and/or by one or more marketplace non-participants, such as by a neutral entity providing the telematics-data-baser/marketplace.
- a universal predictive model may be insulated from marketplace participants such that formulas, weights, biases, and parameters are all determined and maintained by a neutral party and not by marketplace participant. Such universal predictive model may help maintain neutrality and avoid influence or control by the marketplace participants, in some examples, a universal predictive model is opaque to the marketplace participants such that the model functions similar to a black box in that the details of determinations and calculations are hidden to the marketplace participants.
- the neutral party such as a marketplace administrator, may modify and maintain the universal model according to marketplace participants' needs, but such change may only be suggested and not required by the marketplace participants to help maintain a fair marketplace.
- the relative metrics may be a ratio.
- a vehicle operator may be scored relative to its group of similar vehicle operators such that a predicted costs similar to that of the group of similar vehicle operators would result in a predicted relative costs close to unity.
- the group of similar vehicle operators may share similar geolocations, financial statuses, demographics, insurance providers, employers, and/or service providers.
- a first vehicle operator may drive similarly to a second vehicle operator but scored a higher score because the groups of similar vehicle operators to which the first and second vehicle operators are compared against exhibit different levels of driving characteristics.
- a vehicle operator may be associated with multiple groups of similar vehicle operators and each relative metric may be determined relative to one or more of the multiple groups of similar vehicle operators.
- systems and methods of the present disclosure may determine industry-specific, market-specific, use-specific, and/or relative metrics of a vehicle operator based on one or more groups of similar vehicle operators to which the vehicle operator is associated.
- the residual model used to determine the loss ratio may be trained to predict a predicted loss ratio.
- systems and methods of the present disclosure may train the residual model, which may be a machine learning model, using telematics data and historic loss ratios associated with a plurality of vehicle operators. The plurality of vehicle operators may have been insured by the same or different insurance companies.
- systems and methods of the present disclosure may determine, using the trained residual model, a predicted lass ratio for a vehicle operator based on the associated telematics data collected even when historic profitability data (e.g., associated costs and policy premium paid over the past certain time period) are unavailable.
- historic profitability data e.g., associated costs and policy premium paid over the past certain time period
- an incremental loss ratio that is less than 1 may prompt a marketplace participant to issue a premium discount to a vehicle operator, whereas an incremental loss ratio that is more than 1 (e.g., 5) may prompt the marketplace participant to increase the policy premium.
- systems and methods of the present disclosure determine the predicted profitability as a single metric to represent the desirability of a vehicle operator to a marketplace participant.
- the systems and methods of the present disclosure may configure and/or train the predictive model (e.g., a residual model) for determining the predicted incremental profitability to consider telematics data, claim history, costs, premium payments, and/or additional user data.
- the predictive model e.g., a residual model
- systems and methods of the present disclosure determine the one or more price-adjusted metrics based at least in part upon the telematics data associated with the plurality of operators. In certain examples, systems and methods of the present disclosure determine the one or more price-adjusted metrics using one or more residual models configured and/or trained for determining residual risk, performance threshold, mileage threshold, cost threshold, price-adjusted residual risk, price-adjusted performance threshold, price-adjusted mileage threshold, and/or price-adjusted cost threshold.
- systems and methods of the present disclosure configure and/or train one or more models to receive at least incremental telematics data (e.g., telematics data collected over a certain time period) associated with a vehicle operator (e.g., collected via one or more software applications and/or hardware modules) as input and to generate an predicted incremental cost associated with the vehicle operator.
- the predicted incremental costs includes predicted incremental losses and predicted incremental expenses over a pre-determined time period (e.g., a fixed time period during which the vehicle operator is predicted to be a customer to a marketplace participant).
- the predicted incremental losses are associated with one or more predicted claims that may occur during the pre-determined time period.
- systems and methods of the present disclosure provide a feedback associated with one or more vehicle operators to one or more marketplace participants.
- the one or more vehicle operators may be customers, clients, and/or users (e.g., trial users, subscribers, standard users, premium users) of the one or more marketplace participants.
- systems and methods of the present disclosure may collect telematics data and/or additional operator data (e.g., financial data, lifestyle data, social data, and/or online activity data) at least from the one or more marketplace participants.
- the systems and methods of the present disclosure may further generate one or more desirability indices indicative of desirability of the one or more vehicle operators to the one or more marketplace participants.
- the one or more desirability indices may include an incremental profitability, an overall profitability, a predicted incremental profitability, and/or predicted overall profitability.
- systems and methods of the present disclosure present the metric of expected profits and/or metric of expected costs to all marketplace participants or to those who have requested such information. In some examples, systems and methods of the present disclosure present the metric of expected profits and/or metric of expected costs to only selected authenticated marketplace participants for the associated vehicle operators.
- the selected authenticated marketplace participants may be granted an access key associated with a selection of vehicle operators that enables access to some or all of determined metrics of expected profits and/or metrics of expected costs.
- such access key may be termed, may be renewed, may be terminated, such as at the discretion of an originating marketplace participant (to whom the vehicle operator is a user of), the vehicle operator, a marketplace administrator, or a third-party.
- systems and methods of the present disclosure provide an algorithm input interface to its marketplace participants for receiving algorithms provided by each marketplace participant.
- the algorithms may include one or more use-specific algorithms and/or party-specific algorithms for determining custom scores (e.g., profitability score) associated with one or more vehicle operators of interests.
- systems and methods of the present disclosure may execute the algorithms to determine, based on telematics data and/or marketplace scores available on the marketplace, the custom scores for the associated marketplace participants.
- the custom scores may be determined as composite scores, such as composite scores determined based solely on marketplace scores, such as using party-specified weights and biases.
- the custom scores are indicative of the desirability of the associated vehicle operator to the marketplace participant.
- algorithms provided by a first marketplace participant may be shared with a selected other marketplace participants or to be shared with no other marketplace participants.
- Examples of a transparent score may include an acceleration score, a braking score, a focus score, a steering score, a financial reliability score, and a demographic score.
- Examples of an opaque score may include an overall desirability score, a predicted profitability score, a predicted retention score, a predicted risk score, and a predicted costs score.
- systems and methods of the present disclosure determine and provide program-evaluation metrics (e.g., predicted probability of acquisition, actual acquisition data, acquisition costs, and/or vehicle operator desirability scores or trends) to a marketplace participant, such as one or more user-acquisition programs the marketplace participant is experimenting (e.g., in an A-B test). For example, systems and methods of the present disclosure determine and provide a first set of program-evaluation metrics associated with a first plurality of vehicle operators subject to a first user-acquisition program, and determine and provide a second set of program-evaluation metrics associated with a second plurality of vehicle operators subject to a second user-acquisition program.
- program-evaluation metrics e.g., predicted probability of acquisition, actual acquisition data, acquisition costs, and/or vehicle operator desirability scores or trends
- systems and methods of the present disclosure determine and provide program-evaluation metrics (e.g., predicted probability of acquisition, actual acquisition data, acquisition costs, and/or vehicle operator desirability scores or trends) to a marketplace participant for one or more user-retention programs the marketplace participant is experimenting (e.g., in an A-B test).
- program-evaluation metrics e.g., predicted probability of acquisition, actual acquisition data, acquisition costs, and/or vehicle operator desirability scores or trends
- systems and methods of the present disclosure determine and provide a first set of program-evaluation metrics associated with a first plurality of vehicle operators subject to a first user-retention program, and determine and provide a second set of program-evaluation metrics associated with a second plurality of vehicle operators subject to a second user-retention program.
- Systems and methods of the present disclosure may further compare the first set of program-evaluation metrics against the second set of program-evaluation metrics and generate a comparison report for the marketplace participants to evaluate the effectiveness of its user-retention programs. For example, the effectiveness of one or more retention incentives, one or more retention promotions, one or more retention discounts, and/or one or more retention services may be extrapolated from the comparison report.
- systems and methods of the present disclosure provide a telematics auction marketplace, provide telematics data, provide telematics-data-based inferences (e.g., marketplace scores, use-specific scores, party-specific scores), and receive a plurality of bids from a plurality of marketplace participants.
- the plurality of bids may be provided by the marketplace participants based on the desirability of an associated vehicle operator.
- the plurality of bids are indicative of the degree of interest the marketplace participants have for an associated vehicle operator.
- the plurality of bids may be at least for profile information of the associated vehicle operator, advertisement opportunity, advertisement priority, and/or information release priority.
- systems and methods of the present disclosure may provide a marketplace participant of a winning bid additional profile information of a vehicle operator associated with the telematics data and/or inferences displayed
- Systems and methods of the present disclosure may further provide the marketplace participant of the winning bid with one or more advertisement opportunities via one or more advertisement channels on record showing user activity, such as via an application the user uses, via a webpage visited by the user, via a game played by the user, and/or via a billboard positioned by a route the user travels through.
- systems and methods of the present disclosure provide a telematics auction marketplace configured to select a plurality of winning bids.
- the telematics auction marketplace may auction information related to a vehicle operator to a plurality of marketplace participants, receive a plurality of bids from a plurality of marketplace participants, determine a number of winning bids satisfying a bid threshold (e.g., top percentile among the bids in bid amount and/or in bid time and/or satisfying a predetermined monetary or time threshold), determine different priorities won by the number of winning bids, determine different winning packages associated with the different priorities, and delivering the winning packages to a number of winning bidders associated with the number of winning bids.
- a bid threshold e.g., top percentile among the bids in bid amount and/or in bid time and/or satisfying a predetermined monetary or time threshold
- systems and methods of the present disclosure determine a number of winning bids by at least determining a first winning bid and a second winning bid.
- the first winning bid when compared to the second winning bid, may be an earlier bid and/or higher bid, or alternatively have the same bid time or at the same bid amount.
- systems and methods of the present disclosure determine the different priorities by at least determining the first winning bid to have won a first winning priority and the second winning bid to have won a second winning priority.
- the first winning priority may be higher or equal to the second winning priority.
- systems and methods of the present disclosure determine the winning packages at least determining a first winning package associated with the first winning priority and a second winning package associated with the second winning priority.
- systems and methods of the present disclosure provide a telematics auction marketplace configured to release several levels of information related to a vehicle operator listed on the auction marketplace.
- systems and methods of the present disclosure generate a plurality of bidding time windows for the marketplace participants to bid.
- winning bidder(s) of the winning bid(s) of a first bidding time window may be awarded the highest level of information when compared to winning bidder(s) of the winning bid(s) of all subsequent bidding time windows) which occur later than the first bidding time window.
- the highest level of information may include a high level composite score indicative of the desirability of the vehicle operator (e.g., specific to a specific industry, specific market, and/or specific use), whereas a lower level of information, such as those included in winning bids of the subsequent bidding time windows, may include more primitive data and/or primitive scores such as raw telematics data and/or granular scores indicative of granular operator characteristics.
- systems and methods of the present disclosure provide a telematics auction marketplace with conditional bidding, provide telematics data, provide telematics-data-based inferences (e.g., marketplace scores, use-specific scores, party-specific scores), and receive a plurality of conditional bids from a plurality of marketplace participants.
- the plurality of conditional bids may be provided by the marketplace participants based on the desirability of an associated vehicle operator.
- the plurality of conditional bids are indicative of the degree of interest the marketplace participants have for an associated vehicle operator.
- the plurality of conditional bids may be at least for profile information of the associated vehicle operator, advertisement opportunity, advertisement priority, and/or information release priority.
- payment by a winning bidder associated with a conditional bid to the telematics auction marketplace may not be processed or completed (e.g., withheld from completion) until a payment condition is satisfied. This may be in contrast to a non-conditional bid where payment is processed either when the bid was selected as a winner or when the award (e.g., user information) is granted.
- the payment condition may be a predetermined time of retention, a predetermined profitability, a predetermined profits, a predetermined revenue, a conversion event, an acquisition event.
- systems and methods of the present disclosure may deliver an award package (e.g., user information) to a marketplace participant associated with a winning bid without processing the transaction payment. Following the award, systems and methods of the present disclosure may monitor one or more metrics associated with the vehicle operator and the winning marketplace participant. Upon the fulfillment of the payment condition, such as upon the vehicle operator becoming a user of the marketplace participant, the payment may be processed for the transaction.
- systems and methods of the present disclosure may process a first payment at the time of delivering the award package, process a second payment at the time of user acquisition, process a third payment at the time of breakeven (e.g., when user revenue exceeds costs of user acquisition or when the user-resulted revenue exceeds user-resulted costs), process a fourth payment at the time of the minimum profitability (e.g., when the user-resulted revenue exceeds user-resulted costs by a predetermined threshold), and/or process a fifth payment at the time of minimum relationship time (e.g., when the vehicle operator remains a user to the marketplace participant beyond a predetermined threshold).
- a third payment at the time of breakeven e.g., when user revenue exceeds costs of user acquisition or when the user-resulted revenue exceeds user-resulted costs
- process a fourth payment at the time of the minimum profitability e.g., when the user-resulted revenue exceeds user-resulted costs by a predetermined threshold
- systems and methods of the present disclosure provide a telematics auction marketplace configured to receive conditional bids with multiple payment conditions.
- systems and methods of the present disclosure train and/or implement one or more bid profitability predictive models for determining the predicted profit of a conditional bid.
- systems and methods of the present disclosure determine, using the one or more bid profitability predictive models, a predicted long-term profitability of a conditional bid.
- the predicted long-term profitability of a conditional bid may be a complex profitability metric factoring profitability during a plurality of time periods.
- the predicted long-term profitability may include a first sub-profitability corresponding to a time period after a first sub-payment is processed after delivering the award package, a second sub-profitability corresponding to a time period after a second sub-payment is processed after user acquisition, a third sub-profitability corresponding to a time period after a third sub-payment is processed at breakeven (e.g., when user revenue exceeds costs of user acquisition or when the user-resulted revenue exceeds user-resulted costs), a fourth sub-profitability corresponding to a time period after a fourth sub-payment is processed at minimum profitability (e.g., when the user-resulted revenue exceeds user-resulted costs by a predetermined threshold), and/or a fifth sub-profitability corresponding to a time period after a fifth sub-payment is processed at the time of minimum relationship time (e.g., when the vehicle Operator remains a user to the marketplace participant beyond a predetermined threshold).
- systems and methods of the present disclosure collect user management data including acquisition data, retention data, costs data, and/or revenue data.
- systems and methods of the present disclosure collect user management data of a plurality of vehicle operators listed on the telematics marketplace, which may be users, customers, and/or clients of one or more marketplace participants.
- systems and methods of the present disclosure train one or more bid profitability predictive models using the collected user management data.
- systems and methods of the present disclosure determine, using the trained one or more bid profitability predictive models and/or available data of a vehicle operator and/or data of the marketplace participants, how profitable any given marketplace participant would be if matched with the vehicle operator.
- such determination may include determining a predicted period of retention, a predicted costs if become a user of the marketplace participant, and a predicted revenue if becoming a user of the marketplace participant.
- circumstantial values may be considered to determine whether a user would be a good match with a marketplace participant. Such circumstantial values may include social values (e.g., environmental stance).
- systems and methods of the present disclosure provide an application or web-service to which a user may enroll in or subscribe to.
- the application or web-service may collect user input data (e.g., user preferences), user data (e.g., usage characteristics), and/or telematics data from the user and/or third-party sources.
- the application or web-service may upload the collected data onto the telematics-data-based marketplace such that a plurality of marketplace participants may determine whether to bid on the user.
- the application or web-service may receive or collect offers from marketplace participants for a plurality of products and automatically select a desired offer.
- the application or web-service may automatically monitor new insurance policy offers extended to the user, such as whenever new telematics data and/or user data are uploaded onto the telematics marketplace. In some examples, application or web-service may automatically switch from existing insurance policy to one of the new insurance policy offers, such as based on user preferences and/or usage characteristics.
- a computer-implemented method for data management includes: collecting a plurality of personal data sets associated with a plurality of vehicle operators continually; collecting a plurality of sensor data sets associated with the plurality of vehicle operators continually via one or more sensing modules, for each vehicle operator of the plurality of vehicle operators: generating and continually updating an operator profile including the personal data set associated with the vehicle operator; determining and continually updating one or more telematics inferences using one or more universal predictive models based at least in part upon the sensor data set associated with the vehicle operator, the one or more universal predictive models having a plurality of weights and biases hidden to the marketplace participants; generating and continually updating a data profile including the one or more telematics inferences associated with the vehicle operator; and listing and continually updating the data profile onto a telematics marketplace to be accessible by a plurality of marketplace participants; receiving, from a requesting party of the plurality of marketplace participants, an information request for a target operator profile associated with a target data profile selected from the listed data profiles of the
- the determining and continually updating one or more telematics inferences includes determining and continually updating a predicted profitability basal at least in part upon the associated continually received personal data set and the associated continually received sensor data set.
- the determining and continually updating the predicted profitability includes determining and continually updating the predicted profitability using a universal predictive model having a plurality of weights and biases that correspond to the importance of each type of sensor data in the determination of the predicted profitability.
- the determining and continually updating the predicted profitability includes determining and continually updating a predicted costs and a predicted revenue based at least in part upon the associated continually received personal data set and the associated continually received sensor data set.
- the determining and continually updating the predicted profitability includes determining and continually updating a predicted losses and a predicted expenses based at least in part upon the associated continually received personal data set and the associated continually received sensor data set.
- the determining and continually updating the predicted profitability includes collecting, from the plurality of marketplace participants, user acquisition data indicative of whether or not vehicle operators associated with transmitted target operator profiles are successfully acquired as users; determining, based at least in part upon the user acquisition data, one or more model modifications; and modifying the one or more universal predictive models based at least in part upon the one or more model modifications.
- the one or more sensing modules includes a common module used by a plurality of mobile applications; the common module is a software module or a common hardware module; and/or each vehicle operator uses at least one mobile application of the plurality of mobile applications.
- the plurality of mobile applications includes a system software application, an entertainment software application, a gaming software application, a navigation software application, and/or an environment software application.
- the plurality of marketplace participants includes an insurance company, a car rental company, a vehicle manufacturing company, an autonomous driving firm, a shared ride company, a housing firm, a bank, and/or a government agency.
- the one or more telematics inferences includes a profitability score, a reliability score, a financial stability score, a financial reliability score, a demographic score, a mobility score, a predicted risk score, a predicted costs score, a predicted retention score, and/or a payment reliability score.
- the personal data set includes vehicle operator-answered questionnaire data, application-usage data, device-usage data, internet-browsing data, and/or government data.
- a computing system for data management includes: one or more processors; and a memory storing instructions that, upon execution by the one or more processors, cause the computing system to perform one or more processes including: collecting a plurality of personal data sets associated with a plurality of vehicle operators continually, collecting a plurality of sensor data sets associated with the plurality of vehicle operators continually via one or more sensing modules; for each vehicle operator of the plurality of vehicle operators: generating and continually updating an operator profile including the personal data set associated with the vehicle operator; determining and continually updating one or more telematics inferences based at least in part upon the sensor data set associated with the vehicle operator, generating and continually updating a data profile including the one or more telematics inferences associated with the vehicle operator; and listing and continually updating the data profile onto a telematics marketplace to be accessible by a plurality of marketplace participants; receiving, from a requesting party of the plurality of marketplace participants, an information request for a target operator profile associated with a target data profile selected from the listed data profiles of
- a non-transitory computer-readable medium storing instructions for data management, the instructions upon execution by one or more processors of a computing system, cause the computing system to perform one or more processes including: collecting a plurality of personal data sets associated with a plurality of vehicle operators continually; collecting a plurality of sensor data sets associated with the plurality of vehicle operators continually via one or more sensing modules; for each vehicle operator of the plurality of vehicle operators: generating and continually updating an operator profile including the personal data set associated with the vehicle operator; determining and continually updating one or more telematics inferences based at least in part upon the sensor data set associated with the vehicle operator; generating and continually updating a data profile including the one or more telematics inferences associated with the vehicle operator; and listing and continually updating the data profile onto a telematics marketplace to be accessible by a plurality of marketplace participants, receiving, from a requesting party of the plurality of marketplace participants, an information request for a target operator profile associated with a target data profile selected from the listed data profiles of
- the non-transitory computer-readable medium upon execution by one or more processors associated with system 100 of FIG. 1 , system 200 of FIG. 2 , device 5000 of FIG. 4 , and/or system 7000 of FIG. 5 , causes the corresponding system to perform method 300 of FIG. 3 .
- systems and methods of the present disclosure provide a marketplace where one or more profiles and/or user data of one or more vehicle operators may be shared and/or requested, such as based on telematics data associated with the one or more vehicle operators.
- systems and methods of the present disclosure provide a marketplace for sharing one or more vehicle operator profiles based at least in part upon telematics data, such as raw sensor data.
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via a marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensor associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the sensor data associated with one vehicle operator of the plurality of vehicle operators; listing the plurality of data profiles on a marketplace configured to be accessed by a plurality of parties (e.g., insurance companies, car rental companies, vehicle manufacturing companies, autonomous driving fiats, shared Tide companies, housing firms, banks, government agencies, etc.); receiving, from a plurality of parties (e
- systems and methods of the present disclosure provide a marketplace for sharing one or more vehicle operator profiles based at least in part upon operator score (e.g., determined based on telematics data).
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via a marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating, for each vehicle operator of the plurality of vehicle operators, one or more operator scores (e.g., safety score, reliability score, driving characteristic scores such as acceleration, braking, cornering, and/or score indicative of behavioral insights of the operator.) based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the one or more operator scores
- operator scores e.g
- systems and methods of the present disclosure provide a marketplace for sharing one or more vehicle operator profiles based at least in part upon universal operator score (e.g., determined based on telematics data).
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via a marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating, for each vehicle operator of the plurality of vehicle operators, one or more operator scores (e.g., safety score, reliability score, driving characteristic scores such as acceleration, braking, cornering, and/or score indicative of behavioral insights of the operator.) based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the one or more operator
- operator scores e.g
- systems and methods of the present disclosure provide a marketplace for sharing one or more vehicle operator profiles based at least in part upon party-specific operator score (e.g., determined based on telematics data) and/or use-specific operator score (e.g., determined based on telematics data).
- party-specific operator score e.g., determined based on telematics data
- use-specific operator score e.g., determined based on telematics data
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via a marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle-operator; generating, for each vehicle operator of the plurality of vehicle operators, one or more operator scores (e.g., safety score, reliability score, driving characteristic scores such as acceleration, braking, cornering, and/or score indicative of behavioral insights of the operator.) based at least in part upon the sensor data: generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the one or more operator scores associated with one vehicle operator of the plurality of vehicle operators; listing the plurality of data profiles on a marketplace configured to be accessed by a plurality of parties (e.g., insurance companies, car
- generating the one or more operator scores includes: receiving, from the plurality of parties, a plurality of party-provided scoring models, each party-provided scoring model of the plurality of party-provided scoring models being one of a use-specific model and a party-specific model and configured to generate operator scores informative to at least one of a particular use and a particular party; selecting a party-provided scoring model of the plurality of party-provided scoring models based at least in part upon party information; and/or generating the one or more operator scores using the selected party-provided scoring model based at least in part upon the sensor data.
- systems and methods of the present disclosure provide a marketplace with one or more security measures for sharing one or more vehicle operator profiles based at least in part upon party-specific operator score (e.g., determined based on telematics data) and/or use-specific operator score (e.g., determined based on telematics data).
- party-specific operator score e.g., determined based on telematics data
- use-specific operator score e.g., determined based on telematics data
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via a marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating, for each vehicle operator of the plurality of vehicle operators, one or more operator scores (e.g., safety score, reliability score, driving characteristic scores such as acceleration, braking, cornering, and/or score indicative of behavioral insights of the operator) based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the one or more operator scores associated with one vesicle operator of the plurality of vehicle operators; listing the plurality of data profiles on a marketplace configured to be accessed by a plurality of parties (e.g., insurance companies, car
- generating the one or more operator scores includes: receiving, from the plurality of parties, a plurality of party-provided scoring models, each party-provided scoring model of the plurality of party-provided scoring models being one of a use-specific model and a party-specific model and configured to generate operator scores informative to at least one of a particular use and a particular party; imposing security measures including: limiting the plurality of party-provided scoring models to read-only (or use-only); verifying a party-provided audit key for each party-provided scoring model; and/or generating, for each party-provided scoring model, a log recording each model execution, the log being visible to the party who provided the party-provided scoring model; selecting a party-provided scoring model of the plurality of party-provided scoring models based at least in part upon party information; and/or generating the one or more operator scores using the selected party-provided scoring model based at least in part upon the sensor data.
- systems and methods of the present disclosure provide a marketplace for sharing one or more vehicle operator profiles based at least in part upon predicted party-specific operator score (e.g., determined based on telematics data) and/or predicted use-specific operator score (e.g., determined based on telematics data), such as using one or more machine learning models.
- predicted party-specific operator score e.g., determined based on telematics data
- predicted use-specific operator score e.g., determined based on telematics data
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via a marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators, generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator: generating, for each vehicle operator of the plurality of vehicle operators, one or more operator scores (e.g., safety score, reliability score, driving characteristic scores such as acceleration, braking, cornering, and/or score indicative of behavioral insights of the operator.) based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the one or more operator scores associated with one vehicle operator of the plurality of vehicle operators; listing the plurality of data profiles on a marketplace configured to be accessed by a plurality of parties (e.g., insurance companies, car rental companies,
- generating the one or more operator scores includes: training a plurality of score-predicting models trained to generate, given the same input parameters, operator scores similar to a plurality of party-owned scoring models associated with the plurality of parties; selecting a score-predicting model of the plurality of score-predicting models based at least in part upon party information; and/or generating the one or more operator scores using the selected party-provided scoring model based at least in part upon the sensor data.
- systems and/or methods for training a prediction model e.g., an artificial intelligence-based model
- systems and methods of the present disclosure provide a marketplace for sharing one or more vehicle operator profiles based at least in part upon operator score and/or one or more sub-scores.
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via a marketplace includes receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating, for each vehicle operator of the plurality of vehicle operators, a single operator score based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the single operator score associated with one vehicle operator of the plurality of vehicle operators, listing the plurality of data profiles on a marketplace configured to be accessed by a plurality of parties (e.g., insurance companies,
- systems and methods of the present disclosure provide a marketplace for sharing one or more vehicle operator profiles based at least in part upon tiers of operator scores (e.g., of the associated vehicle operators).
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via a marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating, for each vehicle operator of the plurality of vehicle operators, a single operator score based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the single operator score associated with one vehicle operator of the plurality of vehicle operators, distributing the plurality of data profiles into a plurality of score tiers based on the single operator score associated with
- systems and methods of the present disclosure provide an auction marketplace for sharing one or more vehicle operator profiles based at least in part upon telematics data, such as raw sensor data.
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via an auction marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the sensor data associated with one vehicle operator of the plurality of vehicle operators; listing the plurality of data profiles on an auction marketplace configured to be accessed by a plurality of parties (e.g., insurance companies, car rental companies, vehicle manufacturing companies, autonomous driving firms, shared ride companies, housing firms, banks, government agencies, etc.); receiving, from a plurality of parties (e.g.
- systems and methods of the present disclosure provide an auction marketplace for sharing one or more vehicle operator profiles based at least in part upon operator score (e.g., determined based on telematic data of the associated vehicle operators).
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via an auction marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating, for each vehicle operator of the plurality of vehicle operators, one or more operator scores (e.g., safety score, reliability score, driving characteristic scores such as acceleration, braking, cornering, and/or score indicative of behavioral insights of the operator.) based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the one
- operator scores e.g
- systems and methods of the present disclosure provide an auction marketplace for sharing one or more vehicle operator profiles based at least in part upon universal operator score (e.g., determined based on telematic data of the associated vehicle operators).
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via an auction marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating, for each vehicle operator of the plurality of vehicle operators, one or more operator scores (e.g., safety score, reliability score, driving characteristic scores such as acceleration, braking, cornering, and/or score indicative of behavioral insights of the operator.) based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the
- systems and methods of the present disclosure provide an auction marketplace for sharing one or more vehicle operator profiles based at least in part upon party-specific operator score (e.g., determined based on telematic data) and/or use-specific operator score (e.g., determined based on telematic data).
- party-specific operator score e.g., determined based on telematic data
- use-specific operator score e.g., determined based on telematic data
- systems and methods of the present disclosure provide an auction marketplace with one or more security measures for sharing one or more vehicle operator profiles based at least in part upon party-specific operator score (e.g., determined based on telematic data) and/or use-specific operator score (e.g., determined based on telematic data).
- party-specific operator score e.g., determined based on telematic data
- use-specific operator score e.g., determined based on telematic data
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via an auction marketplace includes; receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating, for each vehicle operator of the plurality of vehicle operators, one or more operator scores (e.g., safety score, reliability score, driving characteristic scores such as acceleration, braking, cornering, and/or score indicative of behavioral insights of the operator.) based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the one or more operator scores associated with one vehicle operator of the plurality of vehicle operators; listing the plurality of data profiles on an auction marketplace configured to be accessed by a plurality of parties (e.g., insurance companies, car rental companies,
- generating the one or more operator scores includes: receiving, from the plurality of parties, a plurality of party-provided scoring models, each party-provided scoring model of the plurality of party-provided scoring models being one of a use specific model and a party-specific model and configured to generate operator scores informative to a particular use and a particular party, imposing security measures including one of: limiting the plurality of party-provided scoring models to read-only (or use-only); verifying a party-provided audit key for each party-provided scoring model; and/or generating, for each party-provided scoring model, a log recording each model execution, the log being visible to the party who provided the party-provided scoring model; selecting a party-provided scoring model of the plurality of party-provided scoring models based at least in part upon party information; and/or generating the one or more operator scores using the selected party-provided scoring model based at least in part upon the sensor data.
- systems and methods of the present disclosure provide an auction marketplace for sharing one or more vehicle operator profiles based at least in part upon party-specific operator score (e.g., determined based on telematic data) and/or use-specific operator score (e.g., determined based on telematic data) via one or more machine learning algorithms.
- party-specific operator score e.g., determined based on telematic data
- use-specific operator score e.g., determined based on telematic data
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via an auction marketplace includes receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator, generating, for each vehicle operator of the plurality of vehicle operators, one or more operator scores (e.g., safety score, reliability score, driving characteristic scores such as acceleration, braking, cornering, and/or score indicative of behavioral insights of the operator.) based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data profiles includes the one or more operator scores associated with one vehicle operator of the plurality of vehicle operators; listing the plurality of data profiles on an auction marketplace configured to be accessed by a plurality of parties (e.g., insurance companies, car rental companies, vehicle
- generating the one or more operator scores includes: training a plurality of score-predicting models trained to generate, given the same input parameters, operator scores similar to a plurality of party-owned scoring models associated with the plurality of parties; selecting a score-predicting model of the plurality of score-predicting models based at least in part upon party information, and/or generating the one or more operator scores using the selected party-provided scoring model based at least in part upon the sensor data.
- systems and/or methods for training a prediction model e.g., an artificial intelligence-based model
- systems and methods of the present disclosure provide an auction marketplace for sharing one or more vehicle operator profiles based at least in part upon operator score (e.g., determined based on telematic data) using time-division auctioning.
- a system e.g., one including modules to perform a method
- a method for sharing operator profiles via an auction marketplace includes: receiving sensor data associated with a plurality of vehicle operators, the sensor data collected via one or more sensors associated with each vehicle operator of the plurality of vehicle operators; generating, for each vehicle operator of the plurality of vehicle operators, an operator profile including personal information associated with each vehicle operator; generating, for each vehicle operator of the plurality of vehicle operators, one or more operator scores (e.g., safety score, reliability score, driving characteristic scores such as acceleration, braking, cornering, and/or score indicative of behavioral insights of the operator.) based at least in part upon the sensor data; generating a plurality of data profiles corresponding to the plurality of vehicle operators such that each data profile of the plurality of data
- operator scores e.g
- systems and methods of the present disclosure provide a telematics database configured to be subscribed by a plurality of parties (e.g., companies, organizations, agencies, individuals), such as in a limited license (or limited subscription) or in an exclusive license (or full subscription).
- parties e.g., companies, organizations, agencies, individuals
- a limited license or limited subscription
- an exclusive license or full subscription
- subscribers of the database can request telematics data of one or more vehicle operators from one or more other parties subscribed to the database directly, and the parties receiving the requests may choose to reject or authorize the data share.
- a subscriber in an industry such as banking, that does not collect telematics data of its customers (e.g., who are on the database because telematics data were collected from them via other one or more software applications and/or hardware associated with other subscribers to the database), can request customer information (e.g., behavioral scores) associated with its customers from the database, the customer information being generated based at least in part upon telematics data.
- customer information e.g., behavioral scores
- systems and methods of the present disclosure provide a driving telematics platform configured to be accessed by multiple parties, such as insurance companies, and configured to collect telematics data from a plurality of users, such as via software applications and/or collection hardware, such as in a uniform data format, such as via a shared SDK.
- machine learning programs may be trained by inputting sample data sets or certain data into the programs, such as images, object statistics and information, historical estimates, and/or actual repair costs.
- the machine learning programs may utilize deep learning algorithms that may be primarily focused on pattern recognition and may be trained after processing multiple examples.
- the machine learning programs may include Bayesian Program Learning (BPL), voice recognition and synthesis, image or object recognition, optical character recognition, and/or natural language processing.
- BPL Bayesian Program Learning
- voice recognition and synthesis image or object recognition
- optical character recognition and/or natural language processing
- the machine learning programs may also include natural language processing, semantic analysis, automatic reasoning, and/or other types of machine learning.
- supervised machine learning techniques and/or unsupervised machine learning techniques may be used.
- a processing element may be provided with example inputs and their associated outputs and may seek to discover a general rule that maps inputs to outputs, so that when subsequent novel inputs are provided the processing element may, based upon the discovered rule, accurately predict the correct output.
- unsupervised machine learning the processing element may need to find its own structure in unlabeled example inputs.
- routines, subroutines, applications, or instructions may constitute either software (e.g., code embodied on a non-transitory, machine-readable medium) or hardware.
- routines, etc. are tangible units capable of performing certain operations and may be configured or arranged in a certain manner.
- one or more computing systems e.g., a standalone, client or server computing system
- one or more hardware modules of a computing system e.g., a processor or a group of processors
- software e.g., an application or application portion
- the term “hardware module” should be understood to encompass a tangible entity, be that an entity that is physically constructed, permanently configured (e.g., hardwired), or temporarily configured (e.g., programmed) to operate in a certain manner or to perform certain operations described herein.
- hardware modules are temporarily configured (e.g., programmed)
- each of the hardware modules need not be configured or instantiated at any one instance in time.
- the hardware modules comprise a general-purpose processor configured using software
- the general-purpose processor may be configured as respective different hardware modules at different times.
- Software may accordingly configure a processor, for example, to constitute a particular hardware module at one instance of time and to constitute a different hardware module at a different instance of time.
- the methods and systems described herein may be implemented on many different types of processing devices by program code comprising program instructions that are executable by the device processing subsystem.
- the software program instructions may include source code, object code, machine code, or any other stored data that is operable to cause a processing system to perform the methods and operations described herein.
- Certain implementations may also be used, however, such as firmware or even appropriately designed hardware configured to perform the methods and systems described herein.
- the computing system can include client devices and servers
- a client device and server are generally remote from each other and typically interact through a communication network.
- the relationship of client device and server arises by virtue of computer programs running on the respective computers and having a client device-server relationship to each other.
- a hardware module may be implemented mechanically or electronically.
- a hardware module may comprise dedicated circuitry or logic that may be permanently configured (e.g., as a special-purpose processor, such as a field programmable gate array (FPGA) or an application-specific integrated circuit (ASIC)) to perform certain operations.
- a hardware module may also comprise programmable logic or circuitry (e.g., as encompassed within a general-purpose processor or other programmable processor) that may be temporarily configured by software to perform certain operations. It will be appreciated that the decision to implement a hardware module mechanically, in dedicated and permanently configured circuitry, or in temporarily configured circuitry (e.g., configured by software) may be driven by cost and time considerations.
- Hardware modules may provide information to, and receive information from, other hardware modules. Accordingly, the described hardware modules may be regarded as being communicatively coupled: Where multiple of such hardware modules exist contemporaneously, communications may be achieved through signal transmission (e.g., over appropriate circuits and buses) that connect the hardware modules. In embodiments in which multiple hardware modules are configured or instantiated at different times, communications between such hardware modules may be achieved, for example, through the storage and retrieval of information in memory, structures to which the multiple hardware modules have access. For example, one hardware module may perform an operation and store the output of that operation in a memory device to which it may be communicatively coupled. A further hardware module may then, at a later time, access the memory device to retrieve and process the stored output. Hardware modules may also initiate communications with input or output devices, and may operate on a resource (e.g., a collection of information).
- a resource e.g., a collection of information
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Abstract
Description
Claims (20)
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